JOURNAL ARTICLE

Scalable Structure Learning of Continuous-Time Bayesian Networks from Incomplete Data

Dominik LinznerMichael SchmidtHeinz KoepplWallach, H.Larochelle, H.Beygelzimer, A.d'Alché-Buc, F.Fox, E.Garnett, R.

Year: 2020 Journal:   TUbilio (Technical University of Darmstadt) Vol: 32 Pages: 3741-3751   Publisher: Technical University of Darmstadt

Abstract

Continuous-time Bayesian Networks (CTBNs) represent a compact yet powerful framework for understanding multivariate time-series data. Given complete data, parameters and structure can be estimated efficiently in closed-form. However, if data is incomplete, the latent states of the CTBN have to be estimated by laboriously simulating the intractable dynamics of the assumed CTBN. This is a problem, especially for structure learning tasks, where this has to be done for each element of a super-exponentially growing set of possible structures. In order to circumvent this notorious bottleneck, we develop a novel gradient-based approach to structure learning. Instead of sampling and scoring all possible structures individually, we assume the generator of the CTBN to be composed as a mixture of generators stemming from different structures. In this framework, structure learning can be performed via a gradient-based optimization of mixture weights. We combine this approach with a new variational method that allows for a closed-form calculation of this mixture marginal likelihood. We show the scalability of our method by learning structures of previously inaccessible sizes from synthetic and real-world data.

Keywords:
Computer science Scalability Generator (circuit theory) Artificial intelligence Bayesian network Bottleneck Machine learning Data mining Power (physics)

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3
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0.44
FWCI (Field Weighted Citation Impact)
0
Refs
0.67
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Citation History

Topics

Gaussian Processes and Bayesian Inference
Physical Sciences →  Computer Science →  Artificial Intelligence
Time Series Analysis and Forecasting
Physical Sciences →  Computer Science →  Signal Processing
Bayesian Modeling and Causal Inference
Physical Sciences →  Computer Science →  Artificial Intelligence

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